Long Bingqing, Li Rui, Wang Ronghua, Yin Anyu, Zhuang Ziyi, Jing Yang, E Linning
Department of Radiology, People's Hospital of Longhua, Shenzhen, 518109, China.
Department of Radiology, Shanxi Bethune Hospital, Shanxi Academy of Medical Sciences, Taiyuan, 030032, China.
Comput Biol Med. 2025 Jun;191:110128. doi: 10.1016/j.compbiomed.2025.110128. Epub 2025 Apr 10.
To explore the feasibility of using a diagnostic model constructed with deep learning-radiomics (DLR) features extracted from chest computed tomography (CT) images to predict the gender-age-physiology (GAP) stage of patients with connective tissue disease-associated interstitial lung disease (CTD-ILD).
The data of 264 CTD-ILD patients were retrospectively collected. GAP Stage I, II, III patients are 195, 56, 13 cases respectively. The latter two stages were combined into one group. The patients were randomized into a training set and a validation set. Single-input models were separately constructed using the selected radiomics and DL features, while DLR model was constructed from both sets of features. For all models, the support vector machine (SVM) and logistic regression (LR) algorithms were used for construction. The nomogram models were generated by integrating age, gender, and DLR features.
The DLR model outperformed the radiomics and DL models in both the training set and the validation set. The predictive performance of the DLR model based on the LR algorithm was the best among all the feature-based models (AUC = 0.923). The comprehensive models had even greater performance in predicting the GAP stage of CTD-ILD patients. The comprehensive model using the SVM algorithm had the best performance of the two models (AUC = 0.951).
The DLR model extracted from CT images can assist in the clinical prediction of the GAP stage of CTD-ILD patients. A nomogram showed even greater performance in predicting the GAP stage of CTD-ILD patients.
探讨利用从胸部计算机断层扫描(CT)图像中提取的深度学习-放射组学(DLR)特征构建的诊断模型预测结缔组织病相关间质性肺病(CTD-ILD)患者性别-年龄-生理(GAP)分期的可行性。
回顾性收集264例CTD-ILD患者的数据。GAP分期I、II、III期患者分别为195、56、13例。后两个阶段合并为一组。将患者随机分为训练集和验证集。分别使用选定的放射组学和DL特征构建单输入模型,同时从两组特征构建DLR模型。对于所有模型,使用支持向量机(SVM)和逻辑回归(LR)算法进行构建。通过整合年龄、性别和DLR特征生成列线图模型。
DLR模型在训练集和验证集中均优于放射组学和DL模型。基于LR算法的DLR模型在所有基于特征的模型中预测性能最佳(AUC = 0.923)。综合模型在预测CTD-ILD患者的GAP分期方面表现更佳。使用SVM算法的综合模型在两个模型中性能最佳(AUC = 0.951)。
从CT图像中提取的DLR模型可辅助临床预测CTD-ILD患者的GAP分期。列线图在预测CTD-ILD患者的GAP分期方面表现更佳。